I have several dataframes which look like the following:

```
In [2]: skew
Out[2]:
<class 'pandas.core.frame.DataFrame'>
DatetimeIndex: 96 entries, 2006-01-31 00:00:00 to 2013-12-31 00:00:00
Freq: BM
Data columns (total 3 columns):
AAPL 96 non-null values
GOOG 96 non-null values
MSFT 96 non-null values
dtypes: float64(3)
In [3]: skew.head()
Out[3]:
AAPL GOOG MSFT
2006-01-31 0.531769 -0.567731 2.132850
2006-02-28 -0.389711 0.028723 0.724277
2006-03-31 1.184884 1.009587 -0.959136
2006-04-28 1.664745 0.852869 -4.020731
2006-05-31 -0.419757 -0.288422 0.240444
In [5]: skew.index
Out[5]:
<class 'pandas.tseries.index.DatetimeIndex'>
[2006-01-31 00:00:00, ..., 2013-12-31 00:00:00]
Length: 96, Freq: BM, Timezone: None
```

I want to generate a single column of them with a unique index so that I can merge it with the columns from the other dataframes at a later point, which would looks somewhat like this, but with an unique index:

```
frame
Out[6]:
<class 'pandas.core.frame.DataFrame'>
DatetimeIndex: 288 entries, 2006-01-31 00:00:00 to 2013-12-31 00:00:00
Data columns (total 3 columns):
Returns 285 non-null values
Skew 288 non-null values
WinLose 288 non-null values
dtypes: bool(1), float64(2)
In [7]: frame.head()
Out[7]:
Returns Skew WinLose
2006-01-31 NaN 0.531769 True
2006-02-28 -0.092968 -0.389711 False
2006-03-31 -0.084246 1.184884 True
2006-04-28 0.122290 1.664745 False
2006-05-31 -0.150874 -0.419757 False
```

i.e, something like:

```
In [7]: frame.head()
Out[7]:
Returns Skew WinLose
2006-01-31-AAPL NaN 0.531769 True
2006-02-28-MSFT -0.092968 -0.389711 False
2006-03-31-AAPL -0.084246 1.184884 True
2006-04-28-GOGL 0.122290 1.664745 False
2006-05-31-AAPL -0.150874 -0.419757 False
```

The code is:

```
import pandas as pd
import pandas.io.data as web
#Class parameters
names = ['AAPL','GOOG','MSFT']
# Functions
def get_px(stock, start, end):
return web.get_data_yahoo(stock, start, end)['Close']
def getWinnerLoser(stock, medRet, retsM):
return retsM[stock].shift(-1) >= medRet.shift(-1)
def getSkew( stock, rets, period):
return pd.rolling_skew(rets[stock],period).asfreq('BM').fillna(method='pad')
px = pd.DataFrame(data={n: get_px(n,'1/1/2006','1/1/2014') for n in names})
px = px.asfreq('B').fillna(method = 'pad')
rets = px.pct_change()
# Monthly returns and median return
retsM = px.asfreq('BM').fillna(method = 'pad').pct_change()
medRet = retsM.median(axis = 1)
# Dataframes
winLose = pd.DataFrame(data = {n: getWinnerLoser(n,medRet,retsM) for n in names})
skew = pd.DataFrame(data = {n: getSkew(n,rets,20) for n in names})
# Concatenating
retsMCon = pd.concat(retsM[n] for n in names)
winLoseCon = pd.concat(winLose[n] for n in names)
skewCon = pd.concat(skew[n] for n in names)
frame = pd.DataFrame({'Returns':retsMCon, 'Skew':skewCon, 'WinLose':winLoseCon})
```

I have yet to find a good solution to this